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A Survey on Fuzzy Association Rule Mining

机译:模糊关联规则挖掘研究

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摘要

Association rale mining is one of the fundamental tasks of data mining. The conventional association rule mining algorithms, using crisp set, are meant for handling Boolean data. However, in real life quantitative data are voluminous and need careful attention for discovering knowledge. Therefore, to extract association rides from quantitative data, the dataset at hand must be partitioned into intervals, and then converted into Boolean type. In the sequel, it may suffer with the problem of sharp boundary. Hence, fuzzy association rules are developed as a sharp knife to solve the aforesaid problem by handling quantitative data using fuzzy set. In this paper, the authors present an updated survey of fuzzy association rule mining procedures along with a discussion and relevant pointers for further research.
机译:关联规则挖掘是数据挖掘的基本任务之一。使用明晰集的常规关联规则挖掘算法用于处理布尔数据。但是,在现实生活中,数量庞大的数据需要大量注意才能发现知识。因此,要从定量数据中提取关联游程,必须将手边的数据集划分为区间,然后转换为布尔类型。在续集中,可能会遇到边界锐化的问题。因此,模糊关联规则被发展为一把锋利的刀,以通过使用模糊集处理定量数据来解决上述问题。在本文中,作者提出了对模糊关联规则挖掘程序的更新调查,并进行了讨论和相关的指导,以供进一步研究。

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